烟雾链接:指纹识别干扰可预测的无线并发

Meng Jin, Yuan He, Xiaolong Zheng, Dingyi Fang, Dan Xu, Tianzhang Xing, Xiaojiang Chen
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引用次数: 16

摘要

由于2.4 GHz频段中不断增加的无线设备的干扰,ZigBee设备在未经许可的ISM频段中运行,通常会产生较低的吞吐量和分组接收比。尽管在避免干扰方面已经做了很多努力,但这些努力是以杂项开销为代价的,而杂项开销反过来又损害了信道利用率。我们的实证结果表明,特定的干扰可能对ZigBee发送方的不同出站链路产生不同的影响,这表明并发传输的可能性。基于这一见解,我们提出了Smoggy-Link,这是一种实用的协议,可以在恶劣干扰下利用自适应ZigBee传输的潜在并发性。Smoggy-Link维护一个精确的链路模型来描述和跟踪发送方出站链路的干扰和链路质量之间的关系。通过这种链路模型,Smoggy-Link可以通过低成本的干扰识别方法获得细粒度的时空链路信息。进一步利用链路信息进行自适应选路和智能传输调度。我们使用TinyOS和TelosB motes实现并评估了我们方法的原型。评估结果表明,在各种干扰下,Smoggy-Link在吞吐量和包接收率方面都有一致的提高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Smoggy-Link: Fingerprinting interference for predictable wireless concurrency
Operating in unlicensed ISM bands, ZigBee devices often yield poor throughput and packet reception ratio due to the interference from ever increasing wireless devices in 2.4 GHz band. Although there have been many efforts made for interference avoidance, they come at the cost of miscellaneous overhead, which oppositely hurts channel utilization. Our empirical results show that, a specific interference is likely to have different influence on different outbound links of a ZigBee sender, which indicates the chance of concurrent transmissions. Based on this insight, we propose Smoggy-Link, a practical protocol to exploit the potential concurrency for adaptive ZigBee transmissions under harsh interference. Smoggy-Link maintains an accurate link model to describe and trace the relationship between interference and link quality of the sender's outbound links. With such a link model, Smoggy-Link can obtain fine-grained spatiotemporal link information through a low-cost interference identification method. The link information is further utilized for adaptive link selection and intelligent transmission schedule. We implement and evaluate a prototype of our approach with TinyOS and TelosB motes. The evaluation results show that Smoggy-Link has consistent improvements in both throughput and packet reception ratio under interference from various interferer.
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